English

Worst Case to Average Case Reductions for Polynomials

Combinatorics 2008-07-02 v2

Abstract

A degree-dd polynomial pp in nn variables over a field \F\F is {\em equidistributed} if it takes on each of its \F|\F| values close to equally often, and {\em biased} otherwise. We say that pp has a {\em low rank} if it can be expressed as a bounded combination of polynomials of lower degree. Green and Tao [gt07] have shown that bias imply low rank over large fields (i.e. for the case d<\Fd < |\F|). They have also conjectured that bias imply low rank over general fields. In this work we affirmatively answer their conjecture. Using this result we obtain a general worst case to average case reductions for polynomials. That is, we show that a polynomial that can be {\em approximated} by few polynomials of bounded degree, can be {\em computed} by few polynomials of bounded degree. We derive some relations between our results to the construction of pseudorandom generators, and to the question of testing concise representations.

Keywords

Cite

@article{arxiv.0806.4535,
  title  = {Worst Case to Average Case Reductions for Polynomials},
  author = {Tali Kaufman and Shachar Lovett},
  journal= {arXiv preprint arXiv:0806.4535},
  year   = {2008}
}
R2 v1 2026-06-21T10:55:05.362Z